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arxiv:2409.17533

CAMOT: Camera Angle-aware Multi-Object Tracking

Published on Sep 26, 2024
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Abstract

CAMOT, a camera angle estimator for multi-object tracking, improves performance on occlusion and depth estimation by using object detection, achieving state-of-the-art results with lower computational cost compared to deep-learning-based depth estimators.

AI-generated summary

This paper proposes CAMOT, a simple camera angle estimator for multi-object tracking to tackle two problems: 1) occlusion and 2) inaccurate distance estimation in the depth direction. Under the assumption that multiple objects are located on a flat plane in each video frame, CAMOT estimates the camera angle using object detection. In addition, it gives the depth of each object, enabling pseudo-3D MOT. We evaluated its performance by adding it to various 2D MOT methods on the MOT17 and MOT20 datasets and confirmed its effectiveness. Applying CAMOT to ByteTrack, we obtained 63.8% HOTA, 80.6% MOTA, and 78.5% IDF1 in MOT17, which are state-of-the-art results. Its computational cost is significantly lower than the existing deep-learning-based depth estimators for tracking.

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